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. Mots-clés, Analyse Multi-Fractale, Quantification d'entropie, Entropie Maximale, Entropie d'Ordre-N

. Le-graphe-de-récurrence and . Nonbiaisés, Analyse de Quantification de Récurrence, Nouveaux Invariantes, Detection, Discrimination, Diagnostiquer, Transition Dynamique